Title :
Learning and optimization using the clonal selection principle
Author :
de Castro, Leandro N. ; Von Zuben, Fernando J.
Author_Institution :
Fac. of Electr. & Comput. Eng., State Univ. of Campinas, Brazil
fDate :
6/1/2002 12:00:00 AM
Abstract :
The clonal selection principle is used to explain the basic features of an adaptive immune response to an antigenic stimulus. It establishes the idea that only those cells that recognize the antigens (Ag´s) are selected to proliferate. The selected cells are subject to an affinity maturation process, which improves their affinity to the selective Ag´s. This paper proposes a computational implementation of the clonal selection principle that explicitly takes into account the affinity maturation of the immune response. The general algorithm, named CLONALG, is derived primarily to perform machine learning and pattern recognition tasks, and then it is adapted to solve optimization problems, emphasizing multimodal and combinatorial optimization. Two versions of the algorithm are derived, their computational cost per iteration is presented, and a sensitivity analysis in relation to the user-defined parameters is given. CLONALG is also contrasted with evolutionary algorithms. Several benchmark problems are considered to evaluate the performance of CLONALG and it is also compared to a niching method for multimodal function optimization
Keywords :
adaptive systems; biocybernetics; combinatorial mathematics; evolutionary computation; learning (artificial intelligence); optimisation; pattern recognition; sensitivity analysis; software performance evaluation; CLONALG algorithm; adaptive immune response; affinity maturation process; antigen recognition; antigenic stimulus; benchmark problems; cell proliferation; clonal selection principle; combinatorial optimization; computational cost; computational implementation; evolutionary algorithms; machine learning; multimodal function optimization; multimodal optimization; niching method; pattern recognition; performance evaluation; sensitivity analysis; user-defined parameters; Adaptive systems; Artificial immune systems; Biological system modeling; Biology computing; Computational efficiency; Evolutionary computation; Immune system; Optimization methods; Pattern recognition; Sensitivity analysis;
Journal_Title :
Evolutionary Computation, IEEE Transactions on
DOI :
10.1109/TEVC.2002.1011539